mirror of https://github.com/explosion/spaCy.git
1461 lines
65 KiB
Markdown
1461 lines
65 KiB
Markdown
---
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title: Language Processing Pipelines
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next: /usage/vectors-embeddings
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menu:
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- ['Processing Text', 'processing']
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- ['How Pipelines Work', 'pipelines']
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- ['Custom Components', 'custom-components']
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- ['Extension Attributes', 'custom-components-attributes']
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- ['Plugins & Wrappers', 'plugins']
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---
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import Pipelines101 from 'usage/101/\_pipelines.md'
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<Pipelines101 />
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## Processing text {#processing}
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When you call `nlp` on a text, spaCy will **tokenize** it and then **call each
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component** on the `Doc`, in order. It then returns the processed `Doc` that you
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can work with.
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```python
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doc = nlp("This is a text")
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```
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When processing large volumes of text, the statistical models are usually more
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efficient if you let them work on batches of texts. spaCy's
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[`nlp.pipe`](/api/language#pipe) method takes an iterable of texts and yields
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processed `Doc` objects. The batching is done internally.
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```diff
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texts = ["This is a text", "These are lots of texts", "..."]
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- docs = [nlp(text) for text in texts]
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+ docs = list(nlp.pipe(texts))
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```
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<Infobox title="Tips for efficient processing" emoji="💡">
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- Process the texts **as a stream** using [`nlp.pipe`](/api/language#pipe) and
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buffer them in batches, instead of one-by-one. This is usually much more
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efficient.
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- Only apply the **pipeline components you need**. Getting predictions from the
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model that you don't actually need adds up and becomes very inefficient at
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scale. To prevent this, use the `disable` keyword argument to disable
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components you don't need – either when loading a model, or during processing
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with `nlp.pipe`. See the section on
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[disabling pipeline components](#disabling) for more details and examples.
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</Infobox>
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In this example, we're using [`nlp.pipe`](/api/language#pipe) to process a
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(potentially very large) iterable of texts as a stream. Because we're only
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accessing the named entities in `doc.ents` (set by the `ner` component), we'll
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disable all other statistical components (the `tagger` and `parser`) during
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processing. `nlp.pipe` yields `Doc` objects, so we can iterate over them and
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access the named entity predictions:
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> #### ✏️ Things to try
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>
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> 1. Also disable the `"ner"` component. You'll see that the `doc.ents` are now
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> empty, because the entity recognizer didn't run.
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```python
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### {executable="true"}
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import spacy
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texts = [
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"Net income was $9.4 million compared to the prior year of $2.7 million.",
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"Revenue exceeded twelve billion dollars, with a loss of $1b.",
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]
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nlp = spacy.load("en_core_web_sm")
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for doc in nlp.pipe(texts, disable=["tagger", "parser"]):
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# Do something with the doc here
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print([(ent.text, ent.label_) for ent in doc.ents])
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```
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<Infobox title="Important note" variant="warning">
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When using [`nlp.pipe`](/api/language#pipe), keep in mind that it returns a
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[generator](https://realpython.com/introduction-to-python-generators/) that
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yields `Doc` objects – not a list. So if you want to use it like a list, you'll
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have to call `list()` on it first:
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```diff
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- docs = nlp.pipe(texts)[0] # will raise an error
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+ docs = list(nlp.pipe(texts))[0] # works as expected
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```
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</Infobox>
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## How pipelines work {#pipelines}
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spaCy makes it very easy to create your own pipelines consisting of reusable
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components – this includes spaCy's default tagger, parser and entity recognizer,
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but also your own custom processing functions. A pipeline component can be added
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to an already existing `nlp` object, specified when initializing a `Language`
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class, or defined within a [model package](/usage/saving-loading#models).
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> #### config.cfg (excerpt)
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>
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> ```ini
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> [nlp]
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> lang = "en"
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> pipeline = ["tagger", "parser"]
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>
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> [components]
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>
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> [components.tagger]
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> factory = "tagger"
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> # settings for the tagger component
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>
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> [components.parser]
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> factory = "parser"
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> # settings for the parser component
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> ```
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When you load a model, spaCy first consults the model's
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[`meta.json`](/usage/saving-loading#models) and
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[`config.cfg`](/usage/training#config). The config tells spaCy what language
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class to use, which components are in the pipeline, and how those components
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should be created. spaCy will then do the following:
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1. Load the **language class and data** for the given ID via
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[`get_lang_class`](/api/top-level#util.get_lang_class) and initialize it. The
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`Language` class contains the shared vocabulary, tokenization rules and the
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language-specific settings.
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2. Iterate over the **pipeline names** and look up each component name in the
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`[components]` block. The `factory` tells spaCy which
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[component factory](#custom-components-factories) to use for adding the
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component with with [`add_pipe`](/api/language#add_pipe). The settings are
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passed into the factory.
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3. Make the **model data** available to the `Language` class by calling
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[`from_disk`](/api/language#from_disk) with the path to the model data
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directory.
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So when you call this...
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```python
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nlp = spacy.load("en_core_web_sm")
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```
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... the model's `config.cfg` tells spaCy to use the language `"en"` and the
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pipeline `["tagger", "parser", "ner"]`. spaCy will then initialize
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`spacy.lang.en.English`, and create each pipeline component and add it to the
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processing pipeline. It'll then load in the model's data from its data directory
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and return the modified `Language` class for you to use as the `nlp` object.
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<Infobox title="Changed in v3.0" variant="warning">
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spaCy v3.0 introduces a `config.cfg`, which includes more detailed settings for
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the model pipeline, its components and the
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[training process](/usage/training#config). You can export the config of your
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current `nlp` object by calling [`nlp.config.to_disk`](/api/language#config).
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</Infobox>
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Fundamentally, a [spaCy model](/models) consists of three components: **the
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weights**, i.e. binary data loaded in from a directory, a **pipeline** of
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functions called in order, and **language data** like the tokenization rules and
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language-specific settings. For example, a Spanish NER model requires different
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weights, language data and pipeline components than an English parsing and
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tagging model. This is also why the pipeline state is always held by the
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`Language` class. [`spacy.load`](/api/top-level#spacy.load) puts this all
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together and returns an instance of `Language` with a pipeline set and access to
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the binary data:
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```python
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### spacy.load under the hood
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lang = "en"
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pipeline = ["tagger", "parser", "ner"]
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data_path = "path/to/en_core_web_sm/en_core_web_sm-2.0.0"
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cls = spacy.util.get_lang_class(lang) # 1. Get Language instance, e.g. English()
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nlp = cls() # 2. Initialize it
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for name in pipeline:
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nlp.add_pipe(name) # 3. Add the component to the pipeline
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nlp.from_disk(model_data_path) # 4. Load in the binary data
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```
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When you call `nlp` on a text, spaCy will **tokenize** it and then **call each
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component** on the `Doc`, in order. Since the model data is loaded, the
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components can access it to assign annotations to the `Doc` object, and
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subsequently to the `Token` and `Span` which are only views of the `Doc`, and
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don't own any data themselves. All components return the modified document,
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which is then processed by the component next in the pipeline.
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```python
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### The pipeline under the hood
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doc = nlp.make_doc("This is a sentence") # create a Doc from raw text
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for name, proc in nlp.pipeline: # iterate over components in order
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doc = proc(doc) # apply each component
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```
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The current processing pipeline is available as `nlp.pipeline`, which returns a
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list of `(name, component)` tuples, or `nlp.pipe_names`, which only returns a
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list of human-readable component names.
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```python
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print(nlp.pipeline)
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# [('tagger', <spacy.pipeline.Tagger>), ('parser', <spacy.pipeline.DependencyParser>), ('ner', <spacy.pipeline.EntityRecognizer>)]
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print(nlp.pipe_names)
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# ['tagger', 'parser', 'ner']
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```
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### Built-in pipeline components {#built-in}
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spaCy ships with several built-in pipeline components that are registered with
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string names. This means that you can initialize them by calling
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[`nlp.add_pipe`](/api/language#add_pipe) with their names and spaCy will know
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how to create them. See the [API documentation](/api) for a full list of
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available pipeline components and component functions.
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> #### Usage
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>
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> ```python
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> nlp = spacy.blank("en")
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> nlp.add_pipe("sentencizer")
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> # add_pipe returns the added component
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> ruler = nlp.add_pipe("entity_ruler")
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> ```
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| String name | Component | Description |
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| --------------- | ----------------------------------------------- | ----------------------------------------------------------------------------------------- |
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| `tagger` | [`Tagger`](/api/tagger) | Assign part-of-speech-tags. |
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| `parser` | [`DependencyParser`](/api/dependencyparser) | Assign dependency labels. |
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| `ner` | [`EntityRecognizer`](/api/entityrecognizer) | Assign named entities. |
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| `entity_linker` | [`EntityLinker`](/api/entitylinker) | Assign knowledge base IDs to named entities. Should be added after the entity recognizer. |
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| `entity_ruler` | [`EntityRuler`](/api/entityruler) | Assign named entities based on pattern rules and dictionaries. |
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| `textcat` | [`TextCategorizer`](/api/textcategorizer) | Assign text categories. |
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| `lemmatizer` | [`Lemmatizer`](/api/lemmatizer) | Assign base forms to words. |
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| `morphologizer` | [`Morphologizer`](/api/morphologizer) | Assign morphological features and coarse-grained POS tags. |
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| `senter` | [`SentenceRecognizer`](/api/sentencerecognizer) | Assign sentence boundaries. |
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| `sentencizer` | [`Sentencizer`](/api/sentencizer) | Add rule-based sentence segmentation without the dependency parse. |
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| `tok2vec` | [`Tok2Vec`](/api/tok2vec) | |
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| `transformer` | [`Transformer`](/api/transformer) | Assign the tokens and outputs of a transformer model. |
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### Disabling and modifying pipeline components {#disabling}
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If you don't need a particular component of the pipeline – for example, the
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tagger or the parser, you can **disable loading** it. This can sometimes make a
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big difference and improve loading speed. Disabled component names can be
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provided to [`spacy.load`](/api/top-level#spacy.load),
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[`Language.from_disk`](/api/language#from_disk) or the `nlp` object itself as a
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list:
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```python
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### Disable loading
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nlp = spacy.load("en_core_web_sm", disable=["tagger", "parser"])
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```
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In some cases, you do want to load all pipeline components and their weights,
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because you need them at different points in your application. However, if you
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only need a `Doc` object with named entities, there's no need to run all
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pipeline components on it – that can potentially make processing much slower.
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Instead, you can use the `disable` keyword argument on
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[`nlp.pipe`](/api/language#pipe) to temporarily disable the components **during
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processing**:
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```python
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### Disable for processing
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for doc in nlp.pipe(texts, disable=["tagger", "parser"]):
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# Do something with the doc here
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```
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If you need to **execute more code** with components disabled – e.g. to reset
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the weights or update only some components during training – you can use the
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[`nlp.select_pipes`](/api/language#select_pipes) contextmanager. At the end of
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the `with` block, the disabled pipeline components will be restored
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automatically. Alternatively, `select_pipes` returns an object that lets you
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call its `restore()` method to restore the disabled components when needed. This
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can be useful if you want to prevent unnecessary code indentation of large
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blocks.
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```python
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### Disable for block
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# 1. Use as a contextmanager
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with nlp.select_pipes(disable=["tagger", "parser"]):
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doc = nlp("I won't be tagged and parsed")
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doc = nlp("I will be tagged and parsed")
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# 2. Restore manually
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disabled = nlp.select_pipes(disable="ner")
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doc = nlp("I won't have named entities")
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disabled.restore()
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```
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If you want to disable all pipes except for one or a few, you can use the
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`enable` keyword. Just like the `disable` keyword, it takes a list of pipe
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names, or a string defining just one pipe.
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```python
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# Enable only the parser
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with nlp.select_pipes(enable="parser"):
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doc = nlp("I will only be parsed")
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```
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Finally, you can also use the [`remove_pipe`](/api/language#remove_pipe) method
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to remove pipeline components from an existing pipeline, the
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[`rename_pipe`](/api/language#rename_pipe) method to rename them, or the
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[`replace_pipe`](/api/language#replace_pipe) method to replace them with a
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custom component entirely (more details on this in the section on
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[custom components](#custom-components).
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```python
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nlp.remove_pipe("parser")
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nlp.rename_pipe("ner", "entityrecognizer")
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nlp.replace_pipe("tagger", my_custom_tagger)
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```
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### Sourcing pipeline components from existing models {#sourced-components new="3"}
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Pipeline components that are independent can also be reused across models.
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Instead of adding a new blank component to a pipeline, you can also copy an
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existing component from a pretrained model by setting the `source` argument on
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[`nlp.add_pipe`](/api/language#add_pipe). The first argument will then be
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interpreted as the name of the component in the source pipeline – for instance,
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`"ner"`. This is especially useful for
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[training a model](/usage/training#config-components) because it lets you mix
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and match components and create fully custom model packages with updated
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pretrained components and new components trained on your data.
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<Infobox variant="warning" title="Important note for pretrained components">
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When reusing components across models, keep in mind that the **vocabulary**,
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**vectors** and model settings **must match**. If a pretrained model includes
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[word vectors](/usage/vectors-embeddings) and the component uses them as
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features, the model you copy it to needs to have the _same_ vectors available –
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otherwise, it won't be able to make the same predictions.
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</Infobox>
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> #### In training config
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>
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> Instead of providing a `factory`, component blocks in the training
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> [config](/usage/training#config) can also define a `source`. The string needs
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> to be a loadable spaCy model package or path. The
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>
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> ```ini
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> [components.ner]
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> source = "en_core_web_sm"
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> component = "ner"
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> ```
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>
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> By default, sourced components will be updated with your data during training.
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> If you want to preserve the component as-is, you can "freeze" it:
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>
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> ```ini
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> [training]
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> frozen_components = ["ner"]
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> ```
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```python
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### {executable="true"}
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import spacy
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# The source model with different components
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source_nlp = spacy.load("en_core_web_sm")
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print(source_nlp.pipe_names)
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# Add only the entity recognizer to the new blank model
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nlp = spacy.blank("en")
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nlp.add_pipe("ner", source=source_nlp)
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print(nlp.pipe_names)
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```
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### Analyzing pipeline components {#analysis new="3"}
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The [`nlp.analyze_pipes`](/api/language#analyze_pipes) method analyzes the
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components in the current pipeline and outputs information about them, like the
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attributes they set on the [`Doc`](/api/doc) and [`Token`](/api/token), whether
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they retokenize the `Doc` and which scores they produce during training. It will
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also show warnings if components require values that aren't set by previous
|
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component – for instance, if the entity linker is used but no component that
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runs before it sets named entities. Setting `pretty=True` will pretty-print a
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table instead of only returning the structured data.
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> #### ✏️ Things to try
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>
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> 1. Add the components `"ner"` and `"sentencizer"` _before_ the
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> `"entity_linker"`. The analysis should now show no problems, because
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> requirements are met.
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|
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```python
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### {executable="true"}
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import spacy
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nlp = spacy.blank("en")
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nlp.add_pipe("tagger")
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# This is a problem because it needs entities and sentence boundaries
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nlp.add_pipe("entity_linker")
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analysis = nlp.analyze_pipes(pretty=True)
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```
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<Accordion title="Example output">
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```json
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### Structured
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{
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"summary": {
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"tagger": {
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"assigns": ["token.tag"],
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"requires": [],
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"scores": ["tag_acc", "pos_acc", "lemma_acc"],
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"retokenizes": false
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},
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"entity_linker": {
|
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"assigns": ["token.ent_kb_id"],
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"requires": ["doc.ents", "doc.sents", "token.ent_iob", "token.ent_type"],
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"scores": [],
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"retokenizes": false
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}
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},
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"problems": {
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||
"tagger": [],
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||
"entity_linker": ["doc.ents", "doc.sents", "token.ent_iob", "token.ent_type"]
|
||
},
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||
"attrs": {
|
||
"token.ent_iob": { "assigns": [], "requires": ["entity_linker"] },
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||
"doc.ents": { "assigns": [], "requires": ["entity_linker"] },
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"token.ent_kb_id": { "assigns": ["entity_linker"], "requires": [] },
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"doc.sents": { "assigns": [], "requires": ["entity_linker"] },
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"token.tag": { "assigns": ["tagger"], "requires": [] },
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"token.ent_type": { "assigns": [], "requires": ["entity_linker"] }
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}
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}
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```
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```
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### Pretty
|
||
============================= Pipeline Overview =============================
|
||
|
||
# Component Assigns Requires Scores Retokenizes
|
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- ------------- --------------- -------------- --------- -----------
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0 tagger token.tag tag_acc False
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pos_acc
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lemma_acc
|
||
|
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1 entity_linker token.ent_kb_id doc.ents False
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doc.sents
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token.ent_iob
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token.ent_type
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||
|
||
|
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================================ Problems (4) ================================
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||
⚠ 'entity_linker' requirements not met: doc.ents, doc.sents,
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token.ent_iob, token.ent_type
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||
```
|
||
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</Accordion>
|
||
|
||
<Infobox variant="warning" title="Important note">
|
||
|
||
The pipeline analysis is static and does **not actually run the components**.
|
||
This means that it relies on the information provided by the components
|
||
themselves. If a custom component declares that it assigns an attribute but it
|
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doesn't, the pipeline analysis won't catch that.
|
||
|
||
</Infobox>
|
||
|
||
## Creating custom pipeline components {#custom-components}
|
||
|
||
A pipeline component is a function that receives a `Doc` object, modifies it and
|
||
returns it – – for example, by using the current weights to make a prediction
|
||
and set some annotation on the document. By adding a component to the pipeline,
|
||
you'll get access to the `Doc` at any point **during processing** – instead of
|
||
only being able to modify it afterwards.
|
||
|
||
> #### Example
|
||
>
|
||
> ```python
|
||
> from spacy.language import Language
|
||
>
|
||
> @Language.component("my_component")
|
||
> def my_component(doc):
|
||
> # do something to the doc here
|
||
> return doc
|
||
> ```
|
||
|
||
| Argument | Type | Description |
|
||
| ----------- | ----- | ------------------------------------------------------ |
|
||
| `doc` | `Doc` | The `Doc` object processed by the previous component. |
|
||
| **RETURNS** | `Doc` | The `Doc` object processed by this pipeline component. |
|
||
|
||
The [`@Language.component`](/api/language#component) decorator lets you turn a
|
||
simple function into a pipeline component. It takes at least one argument, the
|
||
**name** of the component factory. You can use this name to add an instance of
|
||
your component to the pipeline. It can also be listed in your model config, so
|
||
you can save, load and train models using your component.
|
||
|
||
Custom components can be added to the pipeline using the
|
||
[`add_pipe`](/api/language#add_pipe) method. Optionally, you can either specify
|
||
a component to add it **before or after**, tell spaCy to add it **first or
|
||
last** in the pipeline, or define a **custom name**. If no name is set and no
|
||
`name` attribute is present on your component, the function name is used.
|
||
|
||
> #### Example
|
||
>
|
||
> ```python
|
||
> nlp.add_pipe("my_component")
|
||
> nlp.add_pipe("my_component", first=True)
|
||
> nlp.add_pipe("my_component", before="parser")
|
||
> ```
|
||
|
||
| Argument | Type | Description |
|
||
| -------- | --------- | ------------------------------------------------------------------------ |
|
||
| `last` | bool | If set to `True`, component is added **last** in the pipeline (default). |
|
||
| `first` | bool | If set to `True`, component is added **first** in the pipeline. |
|
||
| `before` | str / int | String name or index to add the new component **before**. |
|
||
| `after` | str / int | String name or index to add the new component **after**. |
|
||
|
||
<Infobox title="Changed in v3.0" variant="warning">
|
||
|
||
As of v3.0, components need to be registered using the
|
||
[`@Language.component`](/api/language#component) or
|
||
[`@Language.factory`](/api/language#factory) decorator so spaCy knows that a
|
||
function is a component. [`nlp.add_pipe`](/api/language#add_pipe) now takes the
|
||
**string name** of the component factory instead of the component function. This
|
||
doesn't only save you lines of code, it also allows spaCy to validate and track
|
||
your custom components, and make sure they can be saved and loaded.
|
||
|
||
```diff
|
||
- ruler = nlp.create_pipe("entity_ruler")
|
||
- nlp.add_pipe(ruler)
|
||
+ ruler = nlp.add_pipe("entity_ruler")
|
||
```
|
||
|
||
</Infobox>
|
||
|
||
### Examples: Simple stateless pipeline components {#custom-components-simple}
|
||
|
||
The following component receives the `Doc` in the pipeline and prints some
|
||
information about it: the number of tokens, the part-of-speech tags of the
|
||
tokens and a conditional message based on the document length. The
|
||
[`@Language.component`](/api/language#component) decorator lets you register the
|
||
component under the name `"info_component"`.
|
||
|
||
> #### ✏️ Things to try
|
||
>
|
||
> 1. Add the component first in the pipeline by setting `first=True`. You'll see
|
||
> that the part-of-speech tags are empty, because the component now runs
|
||
> before the tagger and the tags aren't available yet.
|
||
> 2. Change the component `name` or remove the `name` argument. You should see
|
||
> this change reflected in `nlp.pipe_names`.
|
||
> 3. Print `nlp.pipeline`. You'll see a list of tuples describing the component
|
||
> name and the function that's called on the `Doc` object in the pipeline.
|
||
> 4. Change the first argument to `@Language.component`, the name, to something
|
||
> else. spaCy should now complain that it doesn't know a component of the
|
||
> name `"info_component"`.
|
||
|
||
```python
|
||
### {executable="true"}
|
||
import spacy
|
||
from spacy.language import Language
|
||
|
||
@Language.component("info_component")
|
||
def my_component(doc):
|
||
print(f"After tokenization, this doc has {len(doc)} tokens.")
|
||
print("The part-of-speech tags are:", [token.pos_ for token in doc])
|
||
if len(doc) < 10:
|
||
print("This is a pretty short document.")
|
||
return doc
|
||
|
||
nlp = spacy.load("en_core_web_sm")
|
||
nlp.add_pipe("info_component", name="print_info", last=True)
|
||
print(nlp.pipe_names) # ['tagger', 'parser', 'ner', 'print_info']
|
||
doc = nlp("This is a sentence.")
|
||
```
|
||
|
||
Here's another example of a pipeline component that implements custom logic to
|
||
improve the sentence boundaries set by the dependency parser. The custom logic
|
||
should therefore be applied **after** tokenization, but _before_ the dependency
|
||
parsing – this way, the parser can also take advantage of the sentence
|
||
boundaries.
|
||
|
||
> #### ✏️ Things to try
|
||
>
|
||
> 1. Print `[token.dep_ for token in doc]` with and without the custom pipeline
|
||
> component. You'll see that the predicted dependency parse changes to match
|
||
> the sentence boundaries.
|
||
> 2. Remove the `else` block. All other tokens will now have `is_sent_start` set
|
||
> to `None` (missing value), the parser will assign sentence boundaries in
|
||
> between.
|
||
|
||
```python
|
||
### {executable="true"}
|
||
import spacy
|
||
from spacy.language import Language
|
||
|
||
@Language.component("custom_sentencizer")
|
||
def custom_sentencizer(doc):
|
||
for i, token in enumerate(doc[:-2]):
|
||
# Define sentence start if pipe + titlecase token
|
||
if token.text == "|" and doc[i + 1].is_title:
|
||
doc[i + 1].is_sent_start = True
|
||
else:
|
||
# Explicitly set sentence start to False otherwise, to tell
|
||
# the parser to leave those tokens alone
|
||
doc[i + 1].is_sent_start = False
|
||
return doc
|
||
|
||
nlp = spacy.load("en_core_web_sm")
|
||
nlp.add_pipe("custom_sentencizer", before="parser") # Insert before the parser
|
||
doc = nlp("This is. A sentence. | This is. Another sentence.")
|
||
for sent in doc.sents:
|
||
print(sent.text)
|
||
```
|
||
|
||
### Component factories and stateful components {#custom-components-factories}
|
||
|
||
Component factories are callables that take settings and return a **pipeline
|
||
component function**. This is useful if your component is stateful and if you
|
||
need to customize their creation, or if you need access to the current `nlp`
|
||
object or the shared vocab. Component factories can be registered using the
|
||
[`@Language.factory`](/api/language#factory) decorator and they need at least
|
||
**two named arguments** that are filled in automatically when the component is
|
||
added to the pipeline:
|
||
|
||
> #### Example
|
||
>
|
||
> ```python
|
||
> from spacy.language import Language
|
||
>
|
||
> @Language.factory("my_component")
|
||
> def my_component(nlp, name):
|
||
> return MyComponent()
|
||
> ```
|
||
|
||
| Argument | Type | Description |
|
||
| -------- | --------------------------- | ------------------------------------------------------------------------------------------------------------------------- |
|
||
| `nlp` | [`Language`](/api/language) | The current `nlp` object. Can be used to access the |
|
||
| `name` | str | The **instance name** of the component in the pipeline. This lets you identify different instances of the same component. |
|
||
|
||
All other settings can be passed in by the user via the `config` argument on
|
||
[`nlp.add_pipe`](/api/language). The
|
||
[`@Language.factory`](/api/language#factory) decorator also lets you define a
|
||
`default_config` that's used as a fallback.
|
||
|
||
<!-- TODO: add example of passing in a custom Python object via the config based on a registered function -->
|
||
|
||
```python
|
||
### With config {highlight="4,9"}
|
||
import spacy
|
||
from spacy.language import Language
|
||
|
||
@Language.factory("my_component", default_config={"some_setting": True})
|
||
def my_component(nlp, name, some_setting: bool):
|
||
return MyComponent(some_setting=some_setting)
|
||
|
||
nlp = spacy.blank("en")
|
||
nlp.add_pipe("my_component", config={"some_setting": False})
|
||
```
|
||
|
||
<Accordion title="How is @Language.factory different from @Language.component?" id="factories-decorator-component">
|
||
|
||
The [`@Language.component`](/api/language#component) decorator is essentially a
|
||
**shortcut** for stateless pipeline component that don't need any settings. This
|
||
means you don't have to always write a function that returns your function if
|
||
there's no state to be passed through – spaCy can just take care of this for
|
||
you. The following two code examples are equivalent:
|
||
|
||
```python
|
||
# Statless component with @Language.factory
|
||
@Language.factory("my_component")
|
||
def create_my_component():
|
||
def my_component(doc):
|
||
# Do something to the doc
|
||
return doc
|
||
|
||
return my_component
|
||
|
||
# Stateless component with @Language.component
|
||
@Language.component("my_component")
|
||
def my_component(doc):
|
||
# Do something to the doc
|
||
return doc
|
||
```
|
||
|
||
</Accordion>
|
||
|
||
<Accordion title="Can I add the @Language.factory decorator to a class?" id="factories-class-decorator" spaced>
|
||
|
||
Yes, the [`@Language.factory`](/api/language#factory) decorator can be added to
|
||
a function or a class. If it's added to a class, it expects the `__init__`
|
||
method to take the arguments `nlp` and `name`, and will populate all other
|
||
arguments from the config. That said, it's often cleaner and more intuitive to
|
||
make your factory a separate function. That's also how spaCy does it internally.
|
||
|
||
</Accordion>
|
||
|
||
### Example: Stateful component with settings
|
||
|
||
This example shows a **stateful** pipeline component for handling acronyms:
|
||
based on a dictionary, it will detect acronyms and their expanded forms in both
|
||
directions and add them to a list as the custom `doc._.acronyms`
|
||
[extension attribute](#custom-components-attributes). Under the hood, it uses
|
||
the [`PhraseMatcher`](/api/phrasematcher) to find instances of the phrases.
|
||
|
||
The factory function takes three arguments: the shared `nlp` object and
|
||
component instance `name`, which are passed in automatically by spaCy, and a
|
||
`case_sensitive` config setting that makes the matching and acronym detection
|
||
case-sensitive.
|
||
|
||
> #### ✏️ Things to try
|
||
>
|
||
> 1. Change the `config` passed to `nlp.add_pipe` and set `"case_sensitive"` to
|
||
> `True`. You should see that the expanded acronym for "LOL" isn't detected
|
||
> anymore.
|
||
> 2. Add some more terms to the `DICTIONARY` and update the processed text so
|
||
> they're detected.
|
||
> 3. Add a `name` argument to `nlp.add_pipe` to change the component name. Print
|
||
> `nlp.pipe_names` to see the change reflected in the pipeline.
|
||
> 4. Print the config of the current `nlp` object with
|
||
> `print(nlp.config.to_str())` and inspect the `[components]` block. You
|
||
> should see an entry for the acronyms component, referencing the factory
|
||
> `acronyms` and the config settings.
|
||
|
||
```python
|
||
### {executable="true"}
|
||
from spacy.language import Language
|
||
from spacy.tokens import Doc
|
||
from spacy.matcher import PhraseMatcher
|
||
import spacy
|
||
|
||
DICTIONARY = {"lol": "laughing out loud", "brb": "be right back"}
|
||
DICTIONARY.update({value: key for key, value in DICTIONARY.items()})
|
||
|
||
@Language.factory("acronyms", default_config={"case_sensitive": False})
|
||
def create_acronym_component(nlp: Language, name: str, case_sensitive: bool):
|
||
return AcronymComponent(nlp, case_sensitive)
|
||
|
||
class AcronymComponent:
|
||
def __init__(self, nlp: Language, case_sensitive: bool):
|
||
# Create the matcher and match on Token.lower if case-insensitive
|
||
matcher_attr = "TEXT" if case_sensitive else "LOWER"
|
||
self.matcher = PhraseMatcher(nlp.vocab, attr=matcher_attr)
|
||
self.matcher.add("ACRONYMS", [nlp.make_doc(term) for term in DICTIONARY])
|
||
self.case_sensitive = case_sensitive
|
||
# Register custom extension on the Doc
|
||
if not Doc.has_extension("acronyms"):
|
||
Doc.set_extension("acronyms", default=[])
|
||
|
||
def __call__(self, doc: Doc) -> Doc:
|
||
# Add the matched spans when doc is processed
|
||
for _, start, end in self.matcher(doc):
|
||
span = doc[start:end]
|
||
acronym = DICTIONARY.get(span.text if self.case_sensitive else span.text.lower())
|
||
doc._.acronyms.append((span, acronym))
|
||
return doc
|
||
|
||
# Add the component to the pipeline and configure it
|
||
nlp = spacy.blank("en")
|
||
nlp.add_pipe("acronyms", config={"case_sensitive": False})
|
||
|
||
# Process a doc and see the results
|
||
doc = nlp("LOL, be right back")
|
||
print(doc._.acronyms)
|
||
```
|
||
|
||
### Python type hints and pydantic validation {#type-hints new="3"}
|
||
|
||
spaCy's configs are powered by our machine learning library Thinc's
|
||
[configuration system](https://thinc.ai/docs/usage-config), which supports
|
||
[type hints](https://docs.python.org/3/library/typing.html) and even
|
||
[advanced type annotations](https://thinc.ai/docs/usage-config#advanced-types)
|
||
using [`pydantic`](https://github.com/samuelcolvin/pydantic). If your component
|
||
factory provides type hints, the values that are passed in will be **checked
|
||
against the expected types**. If the value can't be cast to an integer, spaCy
|
||
will raise an error. `pydantic` also provides strict types like `StrictFloat`,
|
||
which will force the value to be an integer and raise an error if it's not – for
|
||
instance, if your config defines a float.
|
||
|
||
<Infobox variant="warning">
|
||
|
||
If you're not using
|
||
[strict types](https://pydantic-docs.helpmanual.io/usage/types/#strict-types),
|
||
values that can be **cast to** the given type will still be accepted. For
|
||
example, `1` can be cast to a `float` or a `bool` type, but not to a
|
||
`List[str]`. However, if the type is
|
||
[`StrictFloat`](https://pydantic-docs.helpmanual.io/usage/types/#strict-types),
|
||
only a float will be accepted.
|
||
|
||
</Infobox>
|
||
|
||
The following example shows a custom pipeline component for debugging. It can be
|
||
added anywhere in the pipeline and logs information about the `nlp` object and
|
||
the `Doc` that passes through. The `log_level` config setting lets the user
|
||
customize what log statements are shown – for instance, `"INFO"` will show info
|
||
logs and more critical logging statements, whereas `"DEBUG"` will show
|
||
everything. The value is annotated as a `StrictStr`, so it will only accept a
|
||
string value.
|
||
|
||
> #### ✏️ Things to try
|
||
>
|
||
> 1. Change the `config` passed to `nlp.add_pipe` to use the log level `"INFO"`.
|
||
> You should see that only the statement logged with `logger.info` is shown.
|
||
> 2. Change the `config` passed to `nlp.add_pipe` so that it contains unexpected
|
||
> values – for example, a boolean instead of a string: `"log_level": False`.
|
||
> You should see a validation error.
|
||
> 3. Check out the docs on `pydantic`'s
|
||
> [constrained types](https://pydantic-docs.helpmanual.io/usage/types/#constrained-types)
|
||
> and write a type hint for `log_level` that only accepts the exact string
|
||
> values `"DEBUG"`, `"INFO"` or `"CRITICAL"`.
|
||
|
||
```python
|
||
### {executable="true"}
|
||
import spacy
|
||
from spacy.language import Language
|
||
from spacy.tokens import Doc
|
||
from pydantic import StrictStr
|
||
import logging
|
||
|
||
@Language.factory("debug", default_config={"log_level": "DEBUG"})
|
||
class DebugComponent:
|
||
def __init__(self, nlp: Language, name: str, log_level: StrictStr):
|
||
self.logger = logging.getLogger(f"spacy.{name}")
|
||
self.logger.setLevel(log_level)
|
||
self.logger.info(f"Pipeline: {nlp.pipe_names}")
|
||
|
||
def __call__(self, doc: Doc) -> Doc:
|
||
self.logger.debug(f"Doc: {len(doc)} tokens, is_tagged: {doc.is_tagged}")
|
||
return doc
|
||
|
||
nlp = spacy.load("en_core_web_sm")
|
||
nlp.add_pipe("debug", config={"log_level": "DEBUG"})
|
||
doc = nlp("This is a text...")
|
||
```
|
||
|
||
### Language-specific factories {#factories-language new="3"}
|
||
|
||
There are many use case where you might want your pipeline components to be
|
||
language-specific. Sometimes this requires entirely different implementation per
|
||
language, sometimes the only difference is in the settings or data. spaCy allows
|
||
you to register factories of the **same name** on both the `Language` base
|
||
class, as well as its **subclasses** like `English` or `German`. Factories are
|
||
resolved starting with the specific subclass. If the subclass doesn't define a
|
||
component of that name, spaCy will check the `Language` base class.
|
||
|
||
Here's an example of a pipeline component that overwrites the normalized form of
|
||
a token, the `Token.norm_` with an entry from a language-specific lookup table.
|
||
It's registered twice under the name `"token_normalizer"` – once using
|
||
`@English.factory` and once using `@German.factory`:
|
||
|
||
```python
|
||
### {executable="true"}
|
||
from spacy.lang.en import English
|
||
from spacy.lang.de import German
|
||
|
||
class TokenNormalizer:
|
||
def __init__(self, norm_table):
|
||
self.norm_table = norm_table
|
||
|
||
def __call__(self, doc):
|
||
for token in doc:
|
||
# Overwrite the token.norm_ if there's an entry in the data
|
||
token.norm_ = self.norm_table.get(token.text, token.norm_)
|
||
return doc
|
||
|
||
@English.factory("token_normalizer")
|
||
def create_en_normalizer(nlp, name):
|
||
return TokenNormalizer({"realise": "realize", "colour": "color"})
|
||
|
||
@German.factory("token_normalizer")
|
||
def create_de_normalizer(nlp, name):
|
||
return TokenNormalizer({"daß": "dass", "wußte": "wusste"})
|
||
|
||
nlp_en = English()
|
||
nlp_en.add_pipe("token_normalizer") # uses the English factory
|
||
print([token.norm_ for token in nlp_en("realise colour daß wußte")])
|
||
|
||
nlp_de = German()
|
||
nlp_de.add_pipe("token_normalizer") # uses the German factory
|
||
print([token.norm_ for token in nlp_de("realise colour daß wußte")])
|
||
```
|
||
|
||
<Infobox title="Implementation details">
|
||
|
||
Under the hood, language-specific factories are added to the
|
||
[`factories` registry](/api/top-level#registry) prefixed with the language code,
|
||
e.g. `"en.token_normalizer"`. When resolving the factory in
|
||
[`nlp.add_pipe`](/api/language#add_pipe), spaCy first checks for a
|
||
language-specific version of the factory using `nlp.lang` and if none is
|
||
available, falls back to looking up the regular factory name.
|
||
|
||
</Infobox>
|
||
|
||
### Trainable components {#trainable-components new="3"}
|
||
|
||
spaCy's [`Pipe`](/api/pipe) class helps you implement your own trainable
|
||
components that have their own model instance, make predictions over `Doc`
|
||
objects and can be updated using [`spacy train`](/api/cli#train). This lets you
|
||
plug fully custom machine learning components into your pipeline. You'll need
|
||
the following:
|
||
|
||
1. **Model:** A Thinc [`Model`](https://thinc.ai/docs/api-model) instance. This
|
||
can be a model using [layers](https://thinc.ai/docs/api-layers) implemented
|
||
in Thinc, or a [wrapped model](https://thinc.ai/docs/usage-frameworks)
|
||
implemented in PyTorch, TensorFlow, MXNet or a fully custom solution. The
|
||
model must take a list of [`Doc`](/api/doc) objects as input and can have any
|
||
type of output.
|
||
2. **Pipe subclass:** A subclass of [`Pipe`](/api/pipe) that implements at least
|
||
two methods: [`Pipe.predict`](/api/pipe#predict) and
|
||
[`Pipe.set_annotations`](/api/pipe#set_annotations).
|
||
3. **Component factory:** A component factory registered with
|
||
[`@Language.factory`](/api/language#factory) that takes the `nlp` object and
|
||
component `name` and optional settings provided by the config and returns an
|
||
instance of your trainable component.
|
||
|
||
> #### Example
|
||
>
|
||
> ```python
|
||
> from spacy.pipeline import Pipe
|
||
> from spacy.language import Language
|
||
>
|
||
> class TrainableComponent(Pipe):
|
||
> def predict(self, docs):
|
||
> ...
|
||
>
|
||
> def set_annotations(self, docs, scores):
|
||
> ...
|
||
>
|
||
> @Language.factory("my_trainable_component")
|
||
> def make_component(nlp, name, model):
|
||
> return TrainableComponent(nlp.vocab, model, name=name)
|
||
> ```
|
||
|
||
| Name | Description |
|
||
| ---------------------------------------------- | ------------------------------------------------------------------------------------------------------------------- |
|
||
| [`predict`](/api/pipe#predict) | Apply the component's model to a batch of [`Doc`](/api/doc) objects (without modifying them) and return the scores. |
|
||
| [`set_annotations`](/api/pipe#set_annotations) | Modify a batch of [`Doc`](/api/doc) objects, using pre-computed scores generated by `predict`. |
|
||
|
||
By default, [`Pipe.__init__`](/api/pipe#init) takes the shared vocab, the
|
||
[`Model`](https://thinc.ai/docs/api-model) and the name of the component
|
||
instance in the pipeline, which you can use as a key in the losses. All other
|
||
keyword arguments will become available as [`Pipe.cfg`](/api/pipe#cfg) and will
|
||
also be serialized with the component.
|
||
|
||
<Accordion title="Why components should be passed a Model instance, not create it" spaced>
|
||
|
||
spaCy's [config system](/usage/training#config) resolves the config describing
|
||
the pipeline components and models **bottom-up**. This means that it will
|
||
_first_ create a `Model` from a [registered architecture](/api/architectures),
|
||
validate its arguments and _then_ pass the object forward to the component. This
|
||
means that the config can express very complex, nested trees of objects – but
|
||
the objects don't have to pass the model settings all the way down to the
|
||
components. It also makes the components more **modular** and lets you swap
|
||
different architectures in your config, and re-use model definitions.
|
||
|
||
```ini
|
||
### config.cfg (excerpt)
|
||
[components]
|
||
|
||
[components.textcat]
|
||
factory = "textcat"
|
||
labels = []
|
||
|
||
# This function is created and then passed to the "textcat" component as
|
||
# the argument "model"
|
||
[components.textcat.model]
|
||
@architectures = "spacy.TextCatEnsemble.v1"
|
||
exclusive_classes = false
|
||
pretrained_vectors = null
|
||
width = 64
|
||
conv_depth = 2
|
||
embed_size = 2000
|
||
window_size = 1
|
||
ngram_size = 1
|
||
dropout = null
|
||
|
||
[components.other_textcat]
|
||
factory = "textcat"
|
||
# This references the [components.textcat.model] block above
|
||
model = ${components.textcat.model}
|
||
labels = []
|
||
```
|
||
|
||
Your trainable pipeline component factories should therefore always take a
|
||
`model` argument instead of instantiating the
|
||
[`Model`](https://thinc.ai/docs/api-model) inside the component. To register
|
||
custom architectures, you can use the
|
||
[`@spacy.registry.architectures`](/api/top-level#registry) decorator. Also see
|
||
the [training guide](/usage/training#config) for details.
|
||
|
||
</Accordion>
|
||
|
||
For some use cases, it makes sense to also overwrite additional methods to
|
||
customize how the model is updated from examples, how it's initialized, how the
|
||
loss is calculated and to add evaluation scores to the training output.
|
||
|
||
| Name | Description |
|
||
| -------------------------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ |
|
||
| [`update`](/api/pipe#update) | Learn from a batch of [`Example`](/api/example) objects containing the predictions and gold-standard annotations, and update the component's model. |
|
||
| [`begin_training`](/api/pipe#begin_training) | Initialize the model. Typically calls into [`Model.initialize`](https://thinc.ai/docs/api-model#initialize) and [`Pipe.create_optimizer`](/api/pipe#create_optimizer) if no optimizer is provided. |
|
||
| [`get_loss`](/api/pipe#get_loss) | Return a tuple of the loss and the gradient for a batch of [`Example`](/api/example) objects. |
|
||
| [`score`](/api/pipe#score) | Score a batch of [`Example`](/api/example) objects and return a dictionary of scores. The [`@Language.factory`](/api/language#factory) decorator can define the `default_socre_weights` of the component to decide which keys of the scores to display during training and how they count towards the final score. |
|
||
|
||
<!-- TODO: add more details, examples and maybe an example project -->
|
||
|
||
## Extension attributes {#custom-components-attributes new="2"}
|
||
|
||
spaCy allows you to set any custom attributes and methods on the `Doc`, `Span`
|
||
and `Token`, which become available as `Doc._`, `Span._` and `Token._` – for
|
||
example, `Token._.my_attr`. This lets you store additional information relevant
|
||
to your application, add new features and functionality to spaCy, and implement
|
||
your own models trained with other machine learning libraries. It also lets you
|
||
take advantage of spaCy's data structures and the `Doc` object as the "single
|
||
source of truth".
|
||
|
||
<Accordion title="Why ._ and not just a top-level attribute?" id="why-dot-underscore">
|
||
|
||
Writing to a `._` attribute instead of to the `Doc` directly keeps a clearer
|
||
separation and makes it easier to ensure backwards compatibility. For example,
|
||
if you've implemented your own `.coref` property and spaCy claims it one day,
|
||
it'll break your code. Similarly, just by looking at the code, you'll
|
||
immediately know what's built-in and what's custom – for example,
|
||
`doc.sentiment` is spaCy, while `doc._.sent_score` isn't.
|
||
|
||
</Accordion>
|
||
|
||
<Accordion title="How is the ._ implemented?" id="dot-underscore-implementation">
|
||
|
||
Extension definitions – the defaults, methods, getters and setters you pass in
|
||
to `set_extension` – are stored in class attributes on the `Underscore` class.
|
||
If you write to an extension attribute, e.g. `doc._.hello = True`, the data is
|
||
stored within the [`Doc.user_data`](/api/doc#attributes) dictionary. To keep the
|
||
underscore data separate from your other dictionary entries, the string `"._."`
|
||
is placed before the name, in a tuple.
|
||
|
||
</Accordion>
|
||
|
||
---
|
||
|
||
There are three main types of extensions, which can be defined using the
|
||
[`Doc.set_extension`](/api/doc#set_extension),
|
||
[`Span.set_extension`](/api/span#set_extension) and
|
||
[`Token.set_extension`](/api/token#set_extension) methods.
|
||
|
||
1. **Attribute extensions.** Set a default value for an attribute, which can be
|
||
overwritten manually at any time. Attribute extensions work like "normal"
|
||
variables and are the quickest way to store arbitrary information on a `Doc`,
|
||
`Span` or `Token`.
|
||
|
||
```python
|
||
Doc.set_extension("hello", default=True)
|
||
assert doc._.hello
|
||
doc._.hello = False
|
||
```
|
||
|
||
2. **Property extensions.** Define a getter and an optional setter function. If
|
||
no setter is provided, the extension is immutable. Since the getter and
|
||
setter functions are only called when you _retrieve_ the attribute, you can
|
||
also access values of previously added attribute extensions. For example, a
|
||
`Doc` getter can average over `Token` attributes. For `Span` extensions,
|
||
you'll almost always want to use a property – otherwise, you'd have to write
|
||
to _every possible_ `Span` in the `Doc` to set up the values correctly.
|
||
|
||
```python
|
||
Doc.set_extension("hello", getter=get_hello_value, setter=set_hello_value)
|
||
assert doc._.hello
|
||
doc._.hello = "Hi!"
|
||
```
|
||
|
||
3. **Method extensions.** Assign a function that becomes available as an object
|
||
method. Method extensions are always immutable. For more details and
|
||
implementation ideas, see
|
||
[these examples](/usage/examples#custom-components-attr-methods).
|
||
|
||
```python
|
||
Doc.set_extension("hello", method=lambda doc, name: f"Hi {name}!")
|
||
assert doc._.hello("Bob") == "Hi Bob!"
|
||
```
|
||
|
||
Before you can access a custom extension, you need to register it using the
|
||
`set_extension` method on the object you want to add it to, e.g. the `Doc`. Keep
|
||
in mind that extensions are always **added globally** and not just on a
|
||
particular instance. If an attribute of the same name already exists, or if
|
||
you're trying to access an attribute that hasn't been registered, spaCy will
|
||
raise an `AttributeError`.
|
||
|
||
```python
|
||
### Example
|
||
from spacy.tokens import Doc, Span, Token
|
||
|
||
fruits = ["apple", "pear", "banana", "orange", "strawberry"]
|
||
is_fruit_getter = lambda token: token.text in fruits
|
||
has_fruit_getter = lambda obj: any([t.text in fruits for t in obj])
|
||
|
||
Token.set_extension("is_fruit", getter=is_fruit_getter)
|
||
Doc.set_extension("has_fruit", getter=has_fruit_getter)
|
||
Span.set_extension("has_fruit", getter=has_fruit_getter)
|
||
```
|
||
|
||
> #### Usage example
|
||
>
|
||
> ```python
|
||
> doc = nlp("I have an apple and a melon")
|
||
> assert doc[3]._.is_fruit # get Token attributes
|
||
> assert not doc[0]._.is_fruit
|
||
> assert doc._.has_fruit # get Doc attributes
|
||
> assert doc[1:4]._.has_fruit # get Span attributes
|
||
> ```
|
||
|
||
Once you've registered your custom attribute, you can also use the built-in
|
||
`set`, `get` and `has` methods to modify and retrieve the attributes. This is
|
||
especially useful it you want to pass in a string instead of calling
|
||
`doc._.my_attr`.
|
||
|
||
### Example: Pipeline component for GPE entities and country meta data via a REST API {#component-example3}
|
||
|
||
This example shows the implementation of a pipeline component that fetches
|
||
country meta data via the [REST Countries API](https://restcountries.eu), sets
|
||
entity annotations for countries, merges entities into one token and sets custom
|
||
attributes on the `Doc`, `Span` and `Token` – for example, the capital,
|
||
latitude/longitude coordinates and even the country flag.
|
||
|
||
```python
|
||
### {executable="true"}
|
||
import requests
|
||
from spacy.lang.en import English
|
||
from spacy.language import Language
|
||
from spacy.matcher import PhraseMatcher
|
||
from spacy.tokens import Doc, Span, Token
|
||
|
||
@Language.factory("rest_countries")
|
||
class RESTCountriesComponent:
|
||
def __init__(self, nlp, name, label="GPE"):
|
||
r = requests.get("https://restcountries.eu/rest/v2/all")
|
||
r.raise_for_status() # make sure requests raises an error if it fails
|
||
countries = r.json()
|
||
# Convert API response to dict keyed by country name for easy lookup
|
||
self.countries = {c["name"]: c for c in countries}
|
||
self.label = label
|
||
# Set up the PhraseMatcher with Doc patterns for each country name
|
||
self.matcher = PhraseMatcher(nlp.vocab)
|
||
self.matcher.add("COUNTRIES", [nlp.make_doc(c) for c in self.countries.keys()])
|
||
# Register attribute on the Token. We'll be overwriting this based on
|
||
# the matches, so we're only setting a default value, not a getter.
|
||
Token.set_extension("is_country", default=False)
|
||
Token.set_extension("country_capital", default=False)
|
||
Token.set_extension("country_latlng", default=False)
|
||
Token.set_extension("country_flag", default=False)
|
||
# Register attributes on Doc and Span via a getter that checks if one of
|
||
# the contained tokens is set to is_country == True.
|
||
Doc.set_extension("has_country", getter=self.has_country)
|
||
Span.set_extension("has_country", getter=self.has_country)
|
||
|
||
def __call__(self, doc):
|
||
spans = [] # keep the spans for later so we can merge them afterwards
|
||
for _, start, end in self.matcher(doc):
|
||
# Generate Span representing the entity & set label
|
||
entity = Span(doc, start, end, label=self.label)
|
||
spans.append(entity)
|
||
# Set custom attribute on each token of the entity
|
||
# Can be extended with other data returned by the API, like
|
||
# currencies, country code, flag, calling code etc.
|
||
for token in entity:
|
||
token._.set("is_country", True)
|
||
token._.set("country_capital", self.countries[entity.text]["capital"])
|
||
token._.set("country_latlng", self.countries[entity.text]["latlng"])
|
||
token._.set("country_flag", self.countries[entity.text]["flag"])
|
||
# Iterate over all spans and merge them into one token
|
||
with doc.retokenize() as retokenizer:
|
||
for span in spans:
|
||
retokenizer.merge(span)
|
||
# Overwrite doc.ents and add entity – be careful not to replace!
|
||
doc.ents = list(doc.ents) + spans
|
||
return doc # don't forget to return the Doc!
|
||
|
||
def has_country(self, tokens):
|
||
"""Getter for Doc and Span attributes. Since the getter is only called
|
||
when we access the attribute, we can refer to the Token's 'is_country'
|
||
attribute here, which is already set in the processing step."""
|
||
return any([t._.get("is_country") for t in tokens])
|
||
|
||
nlp = English()
|
||
nlp.add_pipe("rest_countries", config={"label": "GPE"})
|
||
doc = nlp("Some text about Colombia and the Czech Republic")
|
||
print("Pipeline", nlp.pipe_names) # pipeline contains component name
|
||
print("Doc has countries", doc._.has_country) # Doc contains countries
|
||
for token in doc:
|
||
if token._.is_country:
|
||
print(token.text, token._.country_capital, token._.country_latlng, token._.country_flag)
|
||
print("Entities", [(e.text, e.label_) for e in doc.ents])
|
||
```
|
||
|
||
In this case, all data can be fetched on initialization in one request. However,
|
||
if you're working with text that contains incomplete country names, spelling
|
||
mistakes or foreign-language versions, you could also implement a
|
||
`like_country`-style getter function that makes a request to the search API
|
||
endpoint and returns the best-matching result.
|
||
|
||
### User hooks {#custom-components-user-hooks}
|
||
|
||
While it's generally recommended to use the `Doc._`, `Span._` and `Token._`
|
||
proxies to add your own custom attributes, spaCy offers a few exceptions to
|
||
allow **customizing the built-in methods** like
|
||
[`Doc.similarity`](/api/doc#similarity) or [`Doc.vector`](/api/doc#vector) with
|
||
your own hooks, which can rely on statistical models you train yourself. For
|
||
instance, you can provide your own on-the-fly sentence segmentation algorithm or
|
||
document similarity method.
|
||
|
||
Hooks let you customize some of the behaviors of the `Doc`, `Span` or `Token`
|
||
objects by adding a component to the pipeline. For instance, to customize the
|
||
[`Doc.similarity`](/api/doc#similarity) method, you can add a component that
|
||
sets a custom function to `doc.user_hooks['similarity']`. The built-in
|
||
`Doc.similarity` method will check the `user_hooks` dict, and delegate to your
|
||
function if you've set one. Similar results can be achieved by setting functions
|
||
to `Doc.user_span_hooks` and `Doc.user_token_hooks`.
|
||
|
||
> #### Implementation note
|
||
>
|
||
> The hooks live on the `Doc` object because the `Span` and `Token` objects are
|
||
> created lazily, and don't own any data. They just proxy to their parent `Doc`.
|
||
> This turns out to be convenient here — we only have to worry about installing
|
||
> hooks in one place.
|
||
|
||
| Name | Customizes |
|
||
| ------------------ | ----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
||
| `user_hooks` | [`Doc.vector`](/api/doc#vector), [`Doc.has_vector`](/api/doc#has_vector), [`Doc.vector_norm`](/api/doc#vector_norm), [`Doc.sents`](/api/doc#sents) |
|
||
| `user_token_hooks` | [`Token.similarity`](/api/token#similarity), [`Token.vector`](/api/token#vector), [`Token.has_vector`](/api/token#has_vector), [`Token.vector_norm`](/api/token#vector_norm), [`Token.conjuncts`](/api/token#conjuncts) |
|
||
| `user_span_hooks` | [`Span.similarity`](/api/span#similarity), [`Span.vector`](/api/span#vector), [`Span.has_vector`](/api/span#has_vector), [`Span.vector_norm`](/api/span#vector_norm), [`Span.root`](/api/span#root) |
|
||
|
||
```python
|
||
### Add custom similarity hooks
|
||
class SimilarityModel:
|
||
def __init__(self, model):
|
||
self._model = model
|
||
|
||
def __call__(self, doc):
|
||
doc.user_hooks["similarity"] = self.similarity
|
||
doc.user_span_hooks["similarity"] = self.similarity
|
||
doc.user_token_hooks["similarity"] = self.similarity
|
||
|
||
def similarity(self, obj1, obj2):
|
||
y = self._model([obj1.vector, obj2.vector])
|
||
return float(y[0])
|
||
```
|
||
|
||
## Developing plugins and wrappers {#plugins}
|
||
|
||
We're very excited about all the new possibilities for community extensions and
|
||
plugins in spaCy, and we can't wait to see what you build with it! To get you
|
||
started, here are a few tips, tricks and best
|
||
practices. [See here](/universe/?category=pipeline) for examples of other spaCy
|
||
extensions.
|
||
|
||
### Usage ideas {#custom-components-usage-ideas}
|
||
|
||
- **Adding new features and hooking in models.** For example, a sentiment
|
||
analysis model, or your preferred solution for lemmatization or sentiment
|
||
analysis. spaCy's built-in tagger, parser and entity recognizer respect
|
||
annotations that were already set on the `Doc` in a previous step of the
|
||
pipeline.
|
||
- **Integrating other libraries and APIs.** For example, your pipeline component
|
||
can write additional information and data directly to the `Doc` or `Token` as
|
||
custom attributes, while making sure no information is lost in the process.
|
||
This can be output generated by other libraries and models, or an external
|
||
service with a REST API.
|
||
- **Debugging and logging.** For example, a component which stores and/or
|
||
exports relevant information about the current state of the processed
|
||
document, and insert it at any point of your pipeline.
|
||
|
||
### Best practices {#custom-components-best-practices}
|
||
|
||
Extensions can claim their own `._` namespace and exist as standalone packages.
|
||
If you're developing a tool or library and want to make it easy for others to
|
||
use it with spaCy and add it to their pipeline, all you have to do is expose a
|
||
function that takes a `Doc`, modifies it and returns it.
|
||
|
||
- Make sure to choose a **descriptive and specific name** for your pipeline
|
||
component class, and set it as its `name` attribute. Avoid names that are too
|
||
common or likely to clash with built-in or a user's other custom components.
|
||
While it's fine to call your package `"spacy_my_extension"`, avoid component
|
||
names including `"spacy"`, since this can easily lead to confusion.
|
||
|
||
```diff
|
||
+ name = "myapp_lemmatizer"
|
||
- name = "lemmatizer"
|
||
```
|
||
|
||
- When writing to `Doc`, `Token` or `Span` objects, **use getter functions**
|
||
wherever possible, and avoid setting values explicitly. Tokens and spans don't
|
||
own any data themselves, and they're implemented as C extension classes – so
|
||
you can't usually add new attributes to them like you could with most pure
|
||
Python objects.
|
||
|
||
```diff
|
||
+ is_fruit = lambda token: token.text in ("apple", "orange")
|
||
+ Token.set_extension("is_fruit", getter=is_fruit)
|
||
|
||
- token._.set_extension("is_fruit", default=False)
|
||
- if token.text in ('"apple", "orange"):
|
||
- token._.set("is_fruit", True)
|
||
```
|
||
|
||
- Always add your custom attributes to the **global** `Doc`, `Token` or `Span`
|
||
objects, not a particular instance of them. Add the attributes **as early as
|
||
possible**, e.g. in your extension's `__init__` method or in the global scope
|
||
of your module. This means that in the case of namespace collisions, the user
|
||
will see an error immediately, not just when they run their pipeline.
|
||
|
||
```diff
|
||
+ from spacy.tokens import Doc
|
||
+ def __init__(attr="my_attr"):
|
||
+ Doc.set_extension(attr, getter=self.get_doc_attr)
|
||
|
||
- def __call__(doc):
|
||
- doc.set_extension("my_attr", getter=self.get_doc_attr)
|
||
```
|
||
|
||
- If your extension is setting properties on the `Doc`, `Token` or `Span`,
|
||
include an option to **let the user to change those attribute names**. This
|
||
makes it easier to avoid namespace collisions and accommodate users with
|
||
different naming preferences. We recommend adding an `attrs` argument to the
|
||
`__init__` method of your class so you can write the names to class attributes
|
||
and reuse them across your component.
|
||
|
||
```diff
|
||
+ Doc.set_extension(self.doc_attr, default="some value")
|
||
- Doc.set_extension("my_doc_attr", default="some value")
|
||
```
|
||
|
||
- Ideally, extensions should be **standalone packages** with spaCy and
|
||
optionally, other packages specified as a dependency. They can freely assign
|
||
to their own `._` namespace, but should stick to that. If your extension's
|
||
only job is to provide a better `.similarity` implementation, and your docs
|
||
state this explicitly, there's no problem with writing to the
|
||
[`user_hooks`](#custom-components-user-hooks) and overwriting spaCy's built-in
|
||
method. However, a third-party extension should **never silently overwrite
|
||
built-ins**, or attributes set by other extensions.
|
||
|
||
- If you're looking to publish a model that depends on a custom pipeline
|
||
component, you can either **require it** in the model package's dependencies,
|
||
or – if the component is specific and lightweight – choose to **ship it with
|
||
your model package** and add it to the `Language` instance returned by the
|
||
model's `load()` method. For examples of this, check out the implementations
|
||
of spaCy's
|
||
[`load_model_from_init_py`](/api/top-level#util.load_model_from_init_py)
|
||
[`load_model_from_path`](/api/top-level#util.load_model_from_path) utility
|
||
functions.
|
||
|
||
- Once you're ready to share your extension with others, make sure to **add docs
|
||
and installation instructions** (you can always link to this page for more
|
||
info). Make it easy for others to install and use your extension, for example
|
||
by uploading it to [PyPi](https://pypi.python.org). If you're sharing your
|
||
code on GitHub, don't forget to tag it with
|
||
[`spacy`](https://github.com/topics/spacy?o=desc&s=stars) and
|
||
[`spacy-extension`](https://github.com/topics/spacy-extension?o=desc&s=stars)
|
||
to help people find it. If you post it on Twitter, feel free to tag
|
||
[@spacy_io](https://twitter.com/spacy_io) so we can check it out.
|
||
|
||
### Wrapping other models and libraries {#wrapping-models-libraries}
|
||
|
||
Let's say you have a custom entity recognizer that takes a list of strings and
|
||
returns their [BILUO tags](/usage/linguistic-features#accessing-ner). Given an
|
||
input like `["A", "text", "about", "Facebook"]`, it will predict and return
|
||
`["O", "O", "O", "U-ORG"]`. To integrate it into your spaCy pipeline and make it
|
||
add those entities to the `doc.ents`, you can wrap it in a custom pipeline
|
||
component function and pass it the token texts from the `Doc` object received by
|
||
the component.
|
||
|
||
The [`gold.spans_from_biluo_tags`](/api/top-level#spans_from_biluo_tags) is very
|
||
helpful here, because it takes a `Doc` object and token-based BILUO tags and
|
||
returns a sequence of `Span` objects in the `Doc` with added labels. So all your
|
||
wrapper has to do is compute the entity spans and overwrite the `doc.ents`.
|
||
|
||
> #### How the doc.ents work
|
||
>
|
||
> When you add spans to the `doc.ents`, spaCy will automatically resolve them
|
||
> back to the underlying tokens and set the `Token.ent_type` and `Token.ent_iob`
|
||
> attributes. By definition, each token can only be part of one entity, so
|
||
> overlapping entity spans are not allowed.
|
||
|
||
```python
|
||
### {highlight="1,8-9"}
|
||
import your_custom_entity_recognizer
|
||
from spacy.gold import offsets_from_biluo_tags
|
||
from spacy.language import Language
|
||
|
||
@Language.component("custom_ner_wrapper")
|
||
def custom_ner_wrapper(doc):
|
||
words = [token.text for token in doc]
|
||
custom_entities = your_custom_entity_recognizer(words)
|
||
doc.ents = spans_from_biluo_tags(doc, custom_entities)
|
||
return doc
|
||
```
|
||
|
||
The `custom_ner_wrapper` can then be added to the pipeline of a blank model
|
||
using [`nlp.add_pipe`](/api/language#add_pipe). You can also replace the
|
||
existing entity recognizer of a pretrained model with
|
||
[`nlp.replace_pipe`](/api/language#replace_pipe).
|
||
|
||
Here's another example of a custom model, `your_custom_model`, that takes a list
|
||
of tokens and returns lists of fine-grained part-of-speech tags, coarse-grained
|
||
part-of-speech tags, dependency labels and head token indices. Here, we can use
|
||
the [`Doc.from_array`](/api/doc#from_array) to create a new `Doc` object using
|
||
those values. To create a numpy array we need integers, so we can look up the
|
||
string labels in the [`StringStore`](/api/stringstore). The
|
||
[`doc.vocab.strings.add`](/api/stringstore#add) method comes in handy here,
|
||
because it returns the integer ID of the string _and_ makes sure it's added to
|
||
the vocab. This is especially important if the custom model uses a different
|
||
label scheme than spaCy's default models.
|
||
|
||
> #### Example: spacy-stanza
|
||
>
|
||
> For an example of an end-to-end wrapper for statistical tokenization, tagging
|
||
> and parsing, check out
|
||
> [`spacy-stanza`](https://github.com/explosion/spacy-stanza). It uses a very
|
||
> similar approach to the example in this section – the only difference is that
|
||
> it fully replaces the `nlp` object instead of providing a pipeline component,
|
||
> since it also needs to handle tokenization.
|
||
|
||
```python
|
||
### {highlight="1,11,17-19"}
|
||
import your_custom_model
|
||
from spacy.language import Language
|
||
from spacy.symbols import POS, TAG, DEP, HEAD
|
||
from spacy.tokens import Doc
|
||
import numpy
|
||
|
||
@Language.component("custom_model_wrapper")
|
||
def custom_model_wrapper(doc):
|
||
words = [token.text for token in doc]
|
||
spaces = [token.whitespace for token in doc]
|
||
pos, tags, deps, heads = your_custom_model(words)
|
||
# Convert the strings to integers and add them to the string store
|
||
pos = [doc.vocab.strings.add(label) for label in pos]
|
||
tags = [doc.vocab.strings.add(label) for label in tags]
|
||
deps = [doc.vocab.strings.add(label) for label in deps]
|
||
# Create a new Doc from a numpy array
|
||
attrs = [POS, TAG, DEP, HEAD]
|
||
arr = numpy.array(list(zip(pos, tags, deps, heads)), dtype="uint64")
|
||
new_doc = Doc(doc.vocab, words=words, spaces=spaces).from_array(attrs, arr)
|
||
return new_doc
|
||
```
|
||
|
||
<Infobox title="Sentence boundaries and heads" variant="warning">
|
||
|
||
If you create a `Doc` object with dependencies and heads, spaCy is able to
|
||
resolve the sentence boundaries automatically. However, note that the `HEAD`
|
||
value used to construct a `Doc` is the token index **relative** to the current
|
||
token – e.g. `-1` for the previous token. The CoNLL format typically annotates
|
||
heads as `1`-indexed absolute indices with `0` indicating the root. If that's
|
||
the case in your annotations, you need to convert them first:
|
||
|
||
```python
|
||
heads = [2, 0, 4, 2, 2]
|
||
new_heads = [head - i - 1 if head != 0 else 0 for i, head in enumerate(heads)]
|
||
```
|
||
|
||
</Infobox>
|
||
|
||
<Infobox title="Advanced usage, serialization and entry points" emoji="📖">
|
||
|
||
For more details on how to write and package custom components, make them
|
||
available to spaCy via entry points and implement your own serialization
|
||
methods, check out the usage guide on
|
||
[saving and loading](/usage/saving-loading).
|
||
|
||
</Infobox>
|